Deep convolutional neural networks for automatic coil pitches detection systems in induction motors

Author:

Nogay Hidir Selcuk1

Affiliation:

1. Kayseri University , Mustafa Cikrikcioglu Vocational College , Kayseri , Türkiye

Abstract

Abstract Stator winding structures are one of the most important parameters affecting motor performance in induction motor (IM). When deciding on the coil pitch, the winding structure and the power performance of the motor are also taken into consideration. The stator coil pitch of the IM is known at the design stage of the motor. The stator coil pitch of an IM manufactured and in use may be wanted to be changed with the desire to improve the performance of the motor and suppress some harmonics. In this case, it is necessary to determine the motor winding structure and coil pitch by opening the stator cover of the motor, removing the rotor, and manually examining the stator winding structure visually. However, this process prolongs this improvement process considerably. A system that can detect the stator coil pitch according to the stator current behavior while the motor is running can significantly shorten this improvement process. For this purpose, in this study, a deep convolutional neural network (DCNN) model that can automatically estimate IM stator coil pitch angle with an accuracy rate of 100% is designed and applied.

Publisher

Walter de Gruyter GmbH

Reference28 articles.

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2. [2] A. M. Silva, F. J. T. E. Ferreira, M. V. Cistelecan, and C. H. Antunes, “Multiobjective Design Optimization of Generalized Multilayer Multiphase AC Winding, in”, IEEE Transactions on Energy Conversion, vol. 34, no. 4, pp. 2158-2167, Dec., doi: 10.1109/TEC.29350092019.

3. [3] Y. Birbir, H. S. Nogay, and S. Taskin, “Prediction of current harmonics in IMs with Artificial Neural Network”, Joint Conference on Electromotion/IEEE Aegean Conference on Electrical Machines and Power Electronics, Bodrum, Turkey, pp. 707-711, 2007.

4. [4] Y. Birbir, H. S. Nogay, and Y. Ozel, “Neural Network Solution to Low Order Odd Current Harmonics in Short Chorded IMs”, Int. J. of Systems Applications, Engineering & Development, vol. 1, no. 2, pp. 21-28, 2007.

5. [5] Y. Birbir, H. S. Nogay, and Y. Karatepe, “Estimation of low order odd current harmonics in short chorded IMs using Artificial Neural Network”, 9 th WSEAS International Conference on Neural Networks (NN 08), Sofija, Bulgaria, pp. 194-197, 2008.

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